This book develops the use of statistical data analysis in finance,
and it uses the statistical software environment of S-PLUS as a
vehicle for presenting practical implementations from financial
engineering. It is divided into three parts. Part I, Exploratory Data
Analysis, reviews the most commonly used methods of statistical data
exploration. Its originality lies in the introduction of tools for the
estimation and simulation of heavy tail distributions and copulas, the
computation of measures of risk, and the principal component analysis
of yield curves. Part II, Regression, introduces modern regression
concepts with an emphasis on robustness and non-parametric
techniques. The applications include the term structure of interest
rates, the construction of commodity forward curves, and
nonparametric alternatives to the Black Scholes option pricing
paradigm. Part III, Time Series and State Space Models, is concerned
with theories of time series and of state space models. Linear ARIMA
models are applied to the analysis of weather derivatives, Kalman
filtering is applied to public company earnings prediction,
and nonlinear GARCH models and nonlinear filtering are applied to
stochastic volatility models. The book is aimed at undergraduate
students in financial engineering, master students in finance and
MBA's, and to practitioners with financial data analysis concerns.
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Produktdetaljer
ISBN
9780387218243
Publisert
2020
Utgiver
Springer Nature
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter